论文标题
使用工业边缘设备的高频机器数据的工具侧面磨损预测
Tool flank wear prediction using high-frequency machine data from industrial edge device
论文作者
论文摘要
工具侧面的磨损监控可以最大程度地减少加工时间的停机成本,同时提高生产率和产品质量。在某些工业应用中,只允许有限的工具磨损能够获得必要的公差。由于其他组件(例如机器的柔性振动),监视从机器收集的数据中监视有限水平的工具磨损可能会变得具有挑战性,以主导测量信号。在这项研究中,提出了一种工具磨损监测技术,可预测纺锤体电流电流和测功机测量的有限型工具磨损。高频主轴电动机电流数据是用工业边缘设备收集的,而切割力和扭矩的旋转测功机在钻孔测试中测量了选定数量的孔。进行功能工程以确定测量信号的统计特征,这些特征对工具磨损的小变化最敏感。开发了基于长短期内存(LSTM)体系结构的神经网络,以预测测得的纺锤体电动电流和测功机信号的工具侧面磨损。已证明该提出的技术以良好的准确性和高计算效率来预测工具侧面的磨损。提出的技术可以轻松地在工业边缘设备中实现,作为实时预测维护应用,以最大程度地减少制造停机时间和工具无法使用或过度使用而产生的成本。
Tool flank wear monitoring can minimize machining downtime costs while increasing productivity and product quality. In some industrial applications, only a limited level of tool wear is allowed to attain necessary tolerances. It may become challenging to monitor a limited level of tool wear in the data collected from the machine due to the other components, such as the flexible vibrations of the machine, dominating the measurement signals. In this study, a tool wear monitoring technique to predict limited levels of tool wear from the spindle motor current and dynamometer measurements is presented. High-frequency spindle motor current data is collected with an industrial edge device while the cutting forces and torque are measured with a rotary dynamometer in drilling tests for a selected number of holes. Feature engineering is conducted to identify the statistical features of the measurement signals that are most sensitive to small changes in tool wear. A neural network based on the long short-term memory (LSTM) architecture is developed to predict tool flank wear from the measured spindle motor current and dynamometer signals. It is demonstrated that the proposed technique predicts tool flank wear with good accuracy and high computational efficiency. The proposed technique can easily be implemented in an industrial edge device as a real-time predictive maintenance application to minimize the costs due to manufacturing downtime and tool underuse or overuse.